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Detection of latent heteroscedasticity and group-based regression effects in linear models via Bayesian model selection

机译:通过贝叶斯模型选择检测线性模型中线性模型的潜在异质性和基于组的回归效应

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摘要

Standard linear modeling approaches make potentially simplistic assumptions regarding the structure of categorical effects that may obfuscate more complex relationships governing data. For example, recent work focused on the two-way unreplicated layout has shown that hidden groupings among the levels of one categorical predictor frequently interact with the ungrouped factor. We extend the notion of a "latent grouping factor" to linear models in general. The proposed work allows researchers to determine whether an apparent grouping of the levels of a categorical predictor reveals a plausible hidden structure given the observed data. Specifically, we offer a Bayesian model selection-based approach to reveal latent group-based heteroscedasticity, regression effects, and/or interactions. Failure to account for such structures can produce misleading conclusions. Since the presence of latent group structures is frequently unknown a priori to the researcher, we use fractional Bayes factor methods and mixture g-priors to overcome lack of prior information.
机译:标准线性建模方法对范畴效应的结构做出了可能过于简单的假设,这可能会混淆管理数据的更复杂关系。例如,最近专注于双向非重复布局的研究表明,一个类别预测因子水平之间的隐藏分组经常与非分组因子相互作用。我们将“潜在分组因子”的概念推广到一般的线性模型。这项提议的工作使研究人员能够确定,在给定观察数据的情况下,分类预测因子水平的一个明显分组是否揭示了一个看似合理的隐藏结构。具体来说,我们提供了一种基于贝叶斯模型选择的方法来揭示潜在的基于组的异方差、回归效应和/或相互作用。不考虑这些结构可能会产生误导性的结论。由于潜在群结构的存在对研究者来说往往是先验未知的,因此我们使用分数贝叶斯因子方法和混合g-先验来克服先验信息的缺乏。

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